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Source Determination in Built-Up Environments Through Bayesian Inference With Validation Using the MUST Array and Joint Urban 2003 Tracer Experiments

机译:通过贝叶斯推断使用必须阵列和联合城市2003示踪实验的验证来源确定内置环境的源

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The problem of determining the source of an emission from the limited information provided by a finite and noisy set of concentration measurements obtained from real-time sensors is an ill-posed inverse problem. In general, this problem cannot be solved uniquely without additional information. A Bayesian probabilistic inferential framework, which provides a natural means for incorporating both errors (theoretical and measurement) and prior (additional) information about the source, is presented. Here, Bayesian inference is applied to find the posterior probability density function of the source parameters (location and strength) given a set of concentration measurements. It is shown how the source-receptor relationship required in the determination of the direct probability (likelihood) can be efficiently calculated using the adjoint of the transport equation for the scalar concentration. The posterior distribution of the source parameters is sampled using a Markov chain Monte Carlo (MCMC) method. The inverse source determination method is validated against real data sets acquired in a highly disturbed (complex) flow field in an urban (built-up) environment. The data sets used to validate the proposed methodology include a water-channel simulation of the near-field dispersion of contaminant plumes in a large array of building-like obstacles [Mock Urban Setting Trial (MUST)] and a full-scale field experiment (Joint Urban 2003) in Oklahoma City. These two examples demonstrate the utility of the proposed approach for inverse source determination.
机译:确定从实时传感器获得的有限和嘈杂的浓度测量的有限信息提供的有限信息提供的发射源是一个不良反问题的不良问题。通常,没有其他信息,无法唯一解决这个问题。展示了一种贝叶斯概率推理框架,它提供了一种用于结合误差(理论和测量)和关于源的(附加)信息的自然手段。这里,给定一组浓度测量来找到贝叶斯推断以找到源参数(位置和强度)的后验概率密度函数。示出了如何使用用于标量浓度的传输方程的伴随的伴随的伴随的直接概率(似然)来如何确定所需的源接收器关系。使用Markov链蒙特卡罗(MCMC)方法采样源参数的后部分布。逆源确定方法针对在城市(内置)环境中的高度受扰(复杂的)流场中获取的真实数据集进行验证。用于验证所提出的方法的数据集包括污染物羽膜近场分散在大型建筑物的近场障碍物[模拟城市设定试验(必须)]和全尺寸现场实验( 2003年联合市区)在俄克拉荷马城。这两个例子证明了所提出的逆源确定方法的效用。

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